# --------------------------------------------------------
# Fast R-CNN
# Copyright (c) 2015 Microsoft
# Licensed under The MIT License [see LICENSE for details]
# Written by Ross Girshick and Xinlei Chen
# --------------------------------------------------------
from __future__ import absolute_import
from __future__ import division
from __future__ import print_function

import os
import os.path as osp
import PIL
# from model.utils.cython_bbox import bbox_overlaps
import numpy as np
import scipy.sparse
from model.utils.config import cfg
import pdb

ROOT_DIR = osp.join(osp.dirname(__file__), '..', '..')

class imdb(object):
  """Image database."""

  def __init__(self, name, classes=None):
    self._name = name
    self._num_classes = 0
    if not classes:
      self._classes = []
    else:
      self._classes = classes
    self._image_index = []
    self._obj_proposer = 'gt'
    self._roidb = None
    self._roidb_handler = self.default_roidb
    # Use this dict for storing dataset specific config options
    self.config = {}

  @property
  def name(self):
    return self._name

  @property
  def num_classes(self):
    return len(self._classes)

  @property
  def classes(self):
    return self._classes

  @property
  def image_index(self):
    return self._image_index

  @property
  def roidb_handler(self):
    return self._roidb_handler

  @roidb_handler.setter
  def roidb_handler(self, val):
    self._roidb_handler = val

  def set_proposal_method(self, method):
    method = eval('self.' + method + '_roidb')
    self.roidb_handler = method

  @property
  def roidb(self):
    # A roidb is a list of dictionaries, each with the following keys:
    #   boxes
    #   gt_overlaps
    #   gt_classes
    #   flipped
    if self._roidb is not None:
      return self._roidb
    self._roidb = self.roidb_handler()
    return self._roidb

  @property
  def cache_path(self):
    cache_path = osp.abspath(osp.join(cfg.DATA_DIR, 'cache'))
    try:
      os.makedirs(cache_path)
    except FileExistsError:
      pass
    return cache_path

  @property
  def num_images(self):
    return len(self.image_index)

  def image_path_at(self, i):
    raise NotImplementedError

  def image_id_at(self, i):
    raise NotImplementedError

  def default_roidb(self):
    raise NotImplementedError

  def evaluate_detections(self, all_boxes, output_dir=None):
    """
    all_boxes is a list of length number-of-classes.
    Each list element is a list of length number-of-images.
    Each of those list elements is either an empty list []
    or a numpy array of detection.

    all_boxes[class][image] = [] or np.array of shape #dets x 5
    """
    raise NotImplementedError

  def _get_widths(self):
    return [PIL.Image.open(self.image_path_at(i)).size[0]
            for i in range(self.num_images)]

  def append_flipped_images(self):
    num_images = self.num_images
    widths = self._get_widths()
    for i in range(num_images):
      boxes = self.roidb[i]['boxes'].copy()
      oldx1 = boxes[:, 0].copy()
      oldx2 = boxes[:, 2].copy()
      boxes[:, 0] = widths[i] - oldx2 - 1
      boxes[:, 2] = widths[i] - oldx1 - 1
      assert (boxes[:, 2] >= boxes[:, 0]).all()
      entry = {'boxes': boxes,
               'gt_overlaps': self.roidb[i]['gt_overlaps'],
               'gt_classes': self.roidb[i]['gt_classes'],
               'flipped': True}
      self.roidb.append(entry)
    self._image_index = self._image_index * 2

  # def evaluate_recall(self, candidate_boxes=None, thresholds=None,
  #                     area='all', limit=None):
  #   """Evaluate detection proposal recall metrics.
  #
  #   Returns:
  #       results: dictionary of results with keys
  #           'ar': average recall
  #           'recalls': vector recalls at each IoU overlap threshold
  #           'thresholds': vector of IoU overlap thresholds
  #           'gt_overlaps': vector of all ground-truth overlaps
  #   """
  #   # Record max overlap value for each gt box
  #   # Return vector of overlap values
  #   areas = {'all': 0, 'small': 1, 'medium': 2, 'large': 3,
  #            '96-128': 4, '128-256': 5, '256-512': 6, '512-inf': 7}
  #   area_ranges = [[0 ** 2, 1e5 ** 2],  # all
  #                  [0 ** 2, 32 ** 2],  # small
  #                  [32 ** 2, 96 ** 2],  # medium
  #                  [96 ** 2, 1e5 ** 2],  # large
  #                  [96 ** 2, 128 ** 2],  # 96-128
  #                  [128 ** 2, 256 ** 2],  # 128-256
  #                  [256 ** 2, 512 ** 2],  # 256-512
  #                  [512 ** 2, 1e5 ** 2],  # 512-inf
  #                  ]
  #   assert area in areas, 'unknown area range: {}'.format(area)
  #   area_range = area_ranges[areas[area]]
  #   gt_overlaps = np.zeros(0)
  #   num_pos = 0
  #   for i in range(self.num_images):
  #     # Checking for max_overlaps == 1 avoids including crowd annotations
  #     # (...pretty hacking :/)
  #     max_gt_overlaps = self.roidb[i]['gt_overlaps'].toarray().max(axis=1)
  #     gt_inds = np.where((self.roidb[i]['gt_classes'] > 0) &
  #                        (max_gt_overlaps == 1))[0]
  #     gt_boxes = self.roidb[i]['boxes'][gt_inds, :]
  #     gt_areas = self.roidb[i]['seg_areas'][gt_inds]
  #     valid_gt_inds = np.where((gt_areas >= area_range[0]) &
  #                              (gt_areas <= area_range[1]))[0]
  #     gt_boxes = gt_boxes[valid_gt_inds, :]
  #     num_pos += len(valid_gt_inds)
  #
  #     if candidate_boxes is None:
  #       # If candidate_boxes is not supplied, the default is to use the
  #       # non-ground-truth boxes from this roidb
  #       non_gt_inds = np.where(self.roidb[i]['gt_classes'] == 0)[0]
  #       boxes = self.roidb[i]['boxes'][non_gt_inds, :]
  #     else:
  #       boxes = candidate_boxes[i]
  #     if boxes.shape[0] == 0:
  #       continue
  #     if limit is not None and boxes.shape[0] > limit:
  #       boxes = boxes[:limit, :]
  #
  #     overlaps = bbox_overlaps(boxes.astype(np.float),
  #                              gt_boxes.astype(np.float))
  #
  #     _gt_overlaps = np.zeros((gt_boxes.shape[0]))
  #     for j in range(gt_boxes.shape[0]):
  #       # find which proposal box maximally covers each gt box
  #       argmax_overlaps = overlaps.argmax(axis=0)
  #       # and get the iou amount of coverage for each gt box
  #       max_overlaps = overlaps.max(axis=0)
  #       # find which gt box is 'best' covered (i.e. 'best' = most iou)
  #       gt_ind = max_overlaps.argmax()
  #       gt_ovr = max_overlaps.max()
  #       assert (gt_ovr >= 0)
  #       # find the proposal box that covers the best covered gt box
  #       box_ind = argmax_overlaps[gt_ind]
  #       # record the iou coverage of this gt box
  #       _gt_overlaps[j] = overlaps[box_ind, gt_ind]
  #       assert (_gt_overlaps[j] == gt_ovr)
  #       # mark the proposal box and the gt box as used
  #       overlaps[box_ind, :] = -1
  #       overlaps[:, gt_ind] = -1
  #     # append recorded iou coverage level
  #     gt_overlaps = np.hstack((gt_overlaps, _gt_overlaps))
  #
  #   gt_overlaps = np.sort(gt_overlaps)
  #   if thresholds is None:
  #     step = 0.05
  #     thresholds = np.arange(0.5, 0.95 + 1e-5, step)
  #   recalls = np.zeros_like(thresholds)
  #   # compute recall for each iou threshold
  #   for i, t in enumerate(thresholds):
  #     recalls[i] = (gt_overlaps >= t).sum() / float(num_pos)
  #   # ar = 2 * np.trapz(recalls, thresholds)
  #   ar = recalls.mean()
  #   return {'ar': ar, 'recalls': recalls, 'thresholds': thresholds,
  #           'gt_overlaps': gt_overlaps}

  def create_roidb_from_box_list(self, box_list, gt_roidb):
    assert len(box_list) == self.num_images, \
      'Number of boxes must match number of ground-truth images'
    roidb = []
    for i in range(self.num_images):
      boxes = box_list[i]
      num_boxes = boxes.shape[0]
      overlaps = np.zeros((num_boxes, self.num_classes), dtype=np.float32)

      if gt_roidb is not None and gt_roidb[i]['boxes'].size > 0:
        gt_boxes = gt_roidb[i]['boxes']
        gt_classes = gt_roidb[i]['gt_classes']
        gt_overlaps = bbox_overlaps(boxes.astype(np.float),
                                    gt_boxes.astype(np.float))
        argmaxes = gt_overlaps.argmax(axis=1)
        maxes = gt_overlaps.max(axis=1)
        I = np.where(maxes > 0)[0]
        overlaps[I, gt_classes[argmaxes[I]]] = maxes[I]

      overlaps = scipy.sparse.csr_matrix(overlaps)
      roidb.append({
        'boxes': boxes,
        'gt_classes': np.zeros((num_boxes,), dtype=np.int32),
        'gt_overlaps': overlaps,
        'flipped': False,
        'seg_areas': np.zeros((num_boxes,), dtype=np.float32),
      })
    return roidb

  @staticmethod
  def merge_roidbs(a, b):
    assert len(a) == len(b)
    for i in range(len(a)):
      a[i]['boxes'] = np.vstack((a[i]['boxes'], b[i]['boxes']))
      a[i]['gt_classes'] = np.hstack((a[i]['gt_classes'],
                                      b[i]['gt_classes']))
      a[i]['gt_overlaps'] = scipy.sparse.vstack([a[i]['gt_overlaps'],
                                                 b[i]['gt_overlaps']])
      a[i]['seg_areas'] = np.hstack((a[i]['seg_areas'],
                                     b[i]['seg_areas']))
    return a

  def competition_mode(self, on):
    """Turn competition mode on or off."""
    pass
